2021
DOI: 10.1371/journal.pone.0254664
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Single image mixed dehazing method based on numerical iterative model and DehazeNet

Abstract: As one of the most common adverse weather phenomena, haze has caused detrimental effects on many computer vision systems. To eliminate the effect of haze, in the field of image processing, image dehazing has been studied intensively, and many advanced dehazing algorithms have been proposed. Physical model-based and deep learning-based methods are two competitive methods for single image dehazing, but it is still a challenging problem to achieve fidelity and effectively dehazing simultaneously in real hazy scen… Show more

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Cited by 4 publications
(1 citation statement)
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“…In 2016, CAI [6] proposed the "DehazeNet [7]" network, which is a trainable end-toend system used for transmission estimation to directly estimate the mapping relationship between hazy images and transmission rates. Hazy images with fog interference are taken as input, and the network outputs the transmission map.…”
Section: Dehazenet Design Model Diagrammentioning
confidence: 99%
“…In 2016, CAI [6] proposed the "DehazeNet [7]" network, which is a trainable end-toend system used for transmission estimation to directly estimate the mapping relationship between hazy images and transmission rates. Hazy images with fog interference are taken as input, and the network outputs the transmission map.…”
Section: Dehazenet Design Model Diagrammentioning
confidence: 99%